Following the success of inductive logic programming on structurally complex but small problems, recently there has been strong interest in relational methods that scale to real-world databases. Propositionalization has already been shown to be a particularly promising approach for robustly and effectively handling larger relational data sets. However, the number of propositional features generated here tends to quickly increase, e.g. with the number of relations, with negative effects especially for the efficiency of learning. In this paper, we show that feature selection techniques can significantly increase the efficiency of transformation-based learning without sacrificing accuracy
Feature selection is an important issue for any learning algorithm, since reduced feature sets lead...
Abstract. We provide a methodology which integrates dynamic feature generation from relational datab...
Abstract. In traditional classification setting, training data are represented as a single table, wh...
summary:Systems aiming at discovering interesting knowledge in data, now commonly called data mining...
Inductive Logic Programming (ILP) is concerned with learning relational descriptions that typically...
A number of Inductive Logic Programming (ILP) systems have addressed the problem of learning First O...
We study representations and relational learning over structured domains within a propositionalizati...
Abstract. Attribute-value based representations, standard in today’s data mining systems, have a lim...
We present a paradigm for efficient learning and inference with relational data using propositional...
Relational learning can be described as the task of learning first-order logic rules from examples. ...
When comparing inductive logic programming (ILP) and attribute-value learning techniques, there is a...
Data is mainly available in relational formats, so relational data mining receives a lot of interes...
Data preprocessing is an important component of machine learning pipelines, which requires ample tim...
Feature selection is an important issue for any learning algorithm, since reduced feature sets lead ...
Regularization is one of the key concepts in machine learning, but so far it has received only littl...
Feature selection is an important issue for any learning algorithm, since reduced feature sets lead...
Abstract. We provide a methodology which integrates dynamic feature generation from relational datab...
Abstract. In traditional classification setting, training data are represented as a single table, wh...
summary:Systems aiming at discovering interesting knowledge in data, now commonly called data mining...
Inductive Logic Programming (ILP) is concerned with learning relational descriptions that typically...
A number of Inductive Logic Programming (ILP) systems have addressed the problem of learning First O...
We study representations and relational learning over structured domains within a propositionalizati...
Abstract. Attribute-value based representations, standard in today’s data mining systems, have a lim...
We present a paradigm for efficient learning and inference with relational data using propositional...
Relational learning can be described as the task of learning first-order logic rules from examples. ...
When comparing inductive logic programming (ILP) and attribute-value learning techniques, there is a...
Data is mainly available in relational formats, so relational data mining receives a lot of interes...
Data preprocessing is an important component of machine learning pipelines, which requires ample tim...
Feature selection is an important issue for any learning algorithm, since reduced feature sets lead ...
Regularization is one of the key concepts in machine learning, but so far it has received only littl...
Feature selection is an important issue for any learning algorithm, since reduced feature sets lead...
Abstract. We provide a methodology which integrates dynamic feature generation from relational datab...
Abstract. In traditional classification setting, training data are represented as a single table, wh...